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An improved mechanical fault diagnosis algorithm based on weighted entropy fusion and modified DS theory

机译:改进的基于加权熵融合和改进DS理论的机械故障诊断算法

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With the rapid rise of modern industrial technology, how to ensure the safe operation of mechanical equipment has become increasingly important. Accurate and effective mechanical fault diagnosis approach can ensure the timely and individualized processing of mechanical fault, which plays a significant role in the safe operation of mechanical equipment. In the field of mechanical fault diagnosis, the noise and interfere of measurement environment and the limited measurement precision of sensors will cause the diversity and complexity of fault signals, which increases the uncertainty of fault diagnosis system. In order to manage the uncertainty of mechanical fault diagnosis system, we adopt the idea of information fusion and information theory to establish a multi-sensor monitoring system based on entropy fusion and DS theory. The proposed fault diagnosis algorithm consists of two steps. Firstly, single sensor utilizes a weighted fusion method to combine four entropies of fault signal (Singular spectrum entropy, power spectrum entropy, wavelet energy spectrum entropy and wavelet space state feature entropy). The weighted fusion method comprehensively fuses fault signal's characteristics from the time domain, frequency domain and time-frequency domain, which can build an accurate evidence for single sensor. Then, a modified DS combination rule based on Lance distance function is put forward in multi-sensor monitoring system to fuse multiple evidences from multi-sensor signals. The modified DS combination rule fully considers the similarity of fault signals from multiple sensors and the difference of multi-sensor monitoring environment, which can obtain a reliable diagnosis result. The improved fault diagnosis algorithm can not only fuse multiple entropies of fault signal reliably under noisy environment, but also combine multi-sensor signals from different sensors. Experimental results and analyses reveal that compared to the contrast methods, the proposed algorithm identifies the correct mechanical fault accurately even with a faulty sensor. Therefore, the proposed algorithm can monitor the running state of mechanical equipment well, and further ensure its safe operation.
机译:随着现代工业技术的迅猛发展,如何确保机械设备的安全运行已变得越来越重要。准确有效的机械故障诊断方法可以保证机械故障的及时个性化处理,对机械设备的安全运行起着重要作用。在机械故障诊断领域,测量环境的噪声和干扰以及传感器的测量精度有限会导致故障信号的多样性和复杂性,从而增加了故障诊断系统的不确定性。为了管理机械故障诊断系统的不确定性,我们采用信息融合和信息论的思想,建立了基于熵融合和DS理论的多传感器监测系统。提出的故障诊断算法包括两个步骤。首先,单传感器利用加权融合方法组合故障信号的四个熵(奇异谱熵,功率谱熵,小波能谱熵和小波空间状态特征熵)。加权融合方法从时域,频域和时频域全面融合了故障信号的特征,可以为单个传感器建立准确的证据。然后,在多传感器监测系统中提出了一种基于兰斯距离函数的改进DS组合规则,融合了来自多传感器信号的多种证据。改进的DS组合规则充分考虑了多传感器故障信号的相似性和多传感器监控环境的差异,可以得到可靠的诊断结果。改进的故障诊断算法不仅可以在嘈杂的环境下可靠地融合故障信号的多个熵,而且可以融合来自不同传感器的多传感器信号。实验结果和分析表明,与对比方法相比,即使传感器出现故障,该算法也能准确地识别出正确的机械故障。因此,该算法可以很好地监测机械设备的运行状态,进一步保证其安全运行。

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